...
首页> 外文期刊>Analytica chimica acta >Bottle-neck type of neural network as a mapping device towards food specifications
【24h】

Bottle-neck type of neural network as a mapping device towards food specifications

机译:瓶颈型神经网络作为食品规格的映射设备

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

A novel methodology is proposed for food specifications associated with the origin of food. The methodology was tested on honey samples collected within the TRACE EU project. The data were sampled in various regions in Europe and analysed for the trace elements content. The sampling sites were characterized by different geological origins, such as limestone, shale, or magmatic. We have chosen 14 elements, B, Na, Mg, A, K, Ca, Mn, Co, Ni, Cu, Zn, Rb, Sr, and Ba, due to their influence on the separation of samples regarding the geology of the sampling sites. A special architecture of an error back-propagation neural network, so called bottle-neck type of neural network was used to project the data into a 2D plane. The data were fed into the 14-nodes input layer and then transferred through the 2-nodes hidden layer (compared to a bottle-neck) to the 14-nodes output layer. The two hidden nodes representing the two coordinates of the projection plane enable us to map the samples used for training of the bottle-neck network. With the knowledge about the classes of individual samples we determine the clusters in the projection plane and consequently obtain the coordinates of the centroid (gravity point) of a particular cluster. The clusters are characterized with an ellipse shape borders spanning the length of up to 3a in each dimension. Since the data were classified as regard to the geology, three main clusters were sought: (i) limestone, (ii) shale/mudstone/clay/loess, and (iii) acid-magmatic origin of honey samples. The novel methodology proposed for food specifications was demonstrated on a reduced set of samples, which shows good clustering of all three classes in the projection plane, and on the third class of the original data set.
机译:针对与食物来源相关的食物规格提出了一种新颖的方法。该方法已在TRACE EU项目中收集的蜂蜜样品上进行了测试。在欧洲各个地区对数据进行了采样,并对痕量元素含量进行了分析。采样地点的特征是不同的地质起源,例如石灰岩,页岩或岩浆。我们选择了14种元素B,Na,Mg,A,K,Ca,Mn,Co,Ni,Cu,Zn,Rb,Sr和Ba,因为它们对采样的地质影响网站。错误反向传播神经网络的特殊架构,即所谓的瓶颈型神经网络,用于将数据投影到2D平面中。数据被馈送到14节点输入层,然后通过2节点隐藏层(与瓶颈相比)传输到14节点输出层。代表投影平面两个坐标的两个隐藏节点使我们能够映射用于训练瓶颈网络的样本。有了有关单个样本类别的知识,我们就可以确定投影平面中的聚类,从而获得特定聚类的质心(重力点)的坐标。簇的特征是椭圆形边界,在每个维度上的长度跨越3a。由于对数据进行了地质分类,因此寻求了三个主要的类群:(i)石灰石,(ii)页岩/泥岩/粘土/黄土,以及(iii)蜂蜜样品的酸岩浆成因。在减少的样本集上展示了针对食品规格提出的新颖方法,该样本集显示了投影平面上所有三个类别以及原始数据集的第三类的良好聚类。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号